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Automated Neuron Detection in High-Content Fluorescence Microscopy Images Using Machine Learning

机译:使用机器学习的高含量荧光显微镜图像中自动神经元检测

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The study of neuronal morphology in relation to function, and the development of effective medicines to positively impact this relationship in patients suffering from neurodegenerative diseases, increasingly involves image-based high-content screening and analysis. The first critical step toward fully automated high-content image analyses in such studies is to detect all neuronal cells and distinguish them from possible non-neuronal cells or artifacts in the images. Here we investigate the performance of well-established machine learning techniques for this purpose. These include support vector machines, random forests, k-nearest neighbors, and generalized linear model classifiers, operating on an extensive set of image features extracted using the compound hierarchy of algorithms representing morphology, and the scale-invariant feature transform. We present experiments on a dataset of rat hippocampal neurons from our own studies to find the most suitable classifier(s) and subset(s) of features in the common practical setting where there is very limited annotated data for training. The results indicate that a random forests classifier using the right feature subset ranks best for the considered task, although its performance is not statistically significantly better than some support vector machine based classification models.
机译:关于功能的神经元形态学的研究以及有效药物的发展在患有神经变性疾病的患者中对这种关系产生积极影响,越来越多地涉及基于图像的高含量筛选和分析。在这些研究中全自动高含量图像分析的第一关键步骤是检测所有神经元细胞,并将它们与图像中可能的非神经元细胞或伪影区分开。在这里,我们探讨了既定机器学习技术为此目的的性能。这些包括支持向量机,随机森林,k最近邻居和广义的线性模型分类器,在使用代表形态的算法的复合层级提取的广泛图像特征上操作,以及尺度不变特征变换。我们在我们自己的研究中对大鼠海马神经元的数据集进行实验,以找到最合适的分类器和子集的共同实际设置中的特征,其中有非常有限的培训数据。结果表明,随机森林分类器使用右侧特征子集对所考虑的任务最佳,尽管其性能不会显着比某些支持向量机基于传输的分类模型更好。

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